Transparent object segmentation from casually captured videos
Segmentation of transparent objects from sequences can be very useful in computer vision
applications. However, without additional auxiliary information it can be hard work for
traditional segmentation methods, as light in the transparent area captured by RGB cameras
mostly derive from the background and the appearance of transparent objects changes with
surroundings. In this article, we present a from‐coarse‐to‐fine transparent object
segmentation method, which utilizes trajectory clustering to roughly distinguish the …
applications. However, without additional auxiliary information it can be hard work for
traditional segmentation methods, as light in the transparent area captured by RGB cameras
mostly derive from the background and the appearance of transparent objects changes with
surroundings. In this article, we present a from‐coarse‐to‐fine transparent object
segmentation method, which utilizes trajectory clustering to roughly distinguish the …
Abstract
Segmentation of transparent objects from sequences can be very useful in computer vision applications. However, without additional auxiliary information it can be hard work for traditional segmentation methods, as light in the transparent area captured by RGB cameras mostly derive from the background and the appearance of transparent objects changes with surroundings. In this article, we present a from‐coarse‐to‐fine transparent object segmentation method, which utilizes trajectory clustering to roughly distinguish the transparent from the background and refine the segmentation based on combination information of color and distortion. We further incorporate the transparency saliency with color and trajectory smoothness throughout the video to acquire a spatiotemporal segmentation based on graph‐cut. We conduct our method on various datasets. The results demonstrate that our method can successfully segment transparent objects from the background.
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